AILGMLDec 31, 2019

Intrinsic motivations and open-ended learning

arXiv:1912.13263v110 citations
Originality Synthesis-oriented
AI Analysis

It synthesizes interdisciplinary insights for researchers in AI and cognitive science, but is incremental as a review.

This paper reviews and connects literature on intrinsic motivations and open-ended learning from psychology, neuroscience, cognitive robotics, and machine learning, defining a taxonomy and linking computational models to biological mechanisms.

There is a growing interest and literature on intrinsic motivations and open-ended learning in both cognitive robotics and machine learning on one side, and in psychology and neuroscience on the other. This paper aims to review some relevant contributions from the two literature threads and to draw links between them. To this purpose, the paper starts by defining intrinsic motivations and by presenting a computationally-driven theoretical taxonomy of their different types. Then it presents relevant contributions from the psychological and neuroscientific literature related to intrinsic motivations, interpreting them based on the grid, and elucidates the mechanisms and functions they play in animals and humans. Endowed with such concepts and their biological underpinnings, the paper next presents a selection of models from cognitive robotics and machine learning that computationally operationalise the concepts of intrinsic motivations and links them to biology concepts. The contribution finally presents some of the open challenges of the field from both the psychological/neuroscientific and computational perspectives.

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